Recent advances and clinical applications of deep learning in medical image analysis

•We especially focused on the latest unsupervised/self-supervised and semi-supervised learning methods in medical image analysis.•We comprehensively summarized the research progress of deep learning technology in four different medical image analysis tasks.•Representative architectures were introduc...

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Veröffentlicht in:Medical image analysis 2022-07, Vol.79, p.102444-102444, Article 102444
Hauptverfasser: Chen, Xuxin, Wang, Ximin, Zhang, Ke, Fung, Kar-Ming, Thai, Theresa C., Moore, Kathleen, Mannel, Robert S., Liu, Hong, Zheng, Bin, Qiu, Yuchen
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container_end_page 102444
container_issue
container_start_page 102444
container_title Medical image analysis
container_volume 79
creator Chen, Xuxin
Wang, Ximin
Zhang, Ke
Fung, Kar-Ming
Thai, Theresa C.
Moore, Kathleen
Mannel, Robert S.
Liu, Hong
Zheng, Bin
Qiu, Yuchen
description •We especially focused on the latest unsupervised/self-supervised and semi-supervised learning methods in medical image analysis.•We comprehensively summarized the research progress of deep learning technology in four different medical image analysis tasks.•Representative architectures were introduced for each task, such as Transformer-based frameworks for segmentation.•We discussed several aspects that are important to achieving large-scale applications of deep learning in clinical settings.•More than 200 recently published papers were reviewed in this review paper. Deep learning has received extensive research interest in developing new medical image processing algorithms, and deep learning based models have been remarkably successful in a variety of medical imaging tasks to support disease detection and diagnosis. Despite the success, the further improvement of deep learning models in medical image analysis is majorly bottlenecked by the lack of large-sized and well-annotated datasets. In the past five years, many studies have focused on addressing this challenge. In this paper, we reviewed and summarized these recent studies to provide a comprehensive overview of applying deep learning methods in various medical image analysis tasks. Especially, we emphasize the latest progress and contributions of state-of-the-art unsupervised and semi-supervised deep learning in medical image analysis, which are summarized based on different application scenarios, including classification, segmentation, detection, and image registration. We also discuss major technical challenges and suggest possible solutions in the future research efforts.
doi_str_mv 10.1016/j.media.2022.102444
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source MEDLINE; Elsevier ScienceDirect Journals
subjects Algorithms
Attention
Classification
Deep Learning
Detection
Diagnostic Imaging - methods
Disease detection
Humans
Image analysis
Image classification
Image processing
Image Processing, Computer-Assisted - methods
Image registration
Image segmentation
Machine learning
Medical images
Medical imaging
Medical research
Registration
Segmentation
Self-supervised learning
Semi-supervised learning
Supervised Machine Learning
Unsupervised learning
Vision Transformer
title Recent advances and clinical applications of deep learning in medical image analysis
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